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2.
Sci Rep ; 12(1): 6877, 2022 04 27.
Article in English | MEDLINE | ID: mdl-35477730

ABSTRACT

Deep neural networks (DNNs) show promise in image-based medical diagnosis, but cannot be fully trusted since they can fail for reasons unrelated to underlying pathology. Humans are less likely to make such superficial mistakes, since they use features that are grounded on medical science. It is therefore important to know whether DNNs use different features than humans. Towards this end, we propose a framework for comparing human and machine perception in medical diagnosis. We frame the comparison in terms of perturbation robustness, and mitigate Simpson's paradox by performing a subgroup analysis. The framework is demonstrated with a case study in breast cancer screening, where we separately analyze microcalcifications and soft tissue lesions. While it is inconclusive whether humans and DNNs use different features to detect microcalcifications, we find that for soft tissue lesions, DNNs rely on high frequency components ignored by radiologists. Moreover, these features are located outside of the region of the images found most suspicious by radiologists. This difference between humans and machines was only visible through subgroup analysis, which highlights the importance of incorporating medical domain knowledge into the comparison.


Subject(s)
Breast Neoplasms , Calcinosis , Breast Neoplasms/diagnostic imaging , Female , Humans , Neural Networks, Computer , Perception , Radiologists
4.
Nat Commun ; 12(1): 5645, 2021 09 24.
Article in English | MEDLINE | ID: mdl-34561440

ABSTRACT

Though consistently shown to detect mammographically occult cancers, breast ultrasound has been noted to have high false-positive rates. In this work, we present an AI system that achieves radiologist-level accuracy in identifying breast cancer in ultrasound images. Developed on 288,767 exams, consisting of 5,442,907 B-mode and Color Doppler images, the AI achieves an area under the receiver operating characteristic curve (AUROC) of 0.976 on a test set consisting of 44,755 exams. In a retrospective reader study, the AI achieves a higher AUROC than the average of ten board-certified breast radiologists (AUROC: 0.962 AI, 0.924 ± 0.02 radiologists). With the help of the AI, radiologists decrease their false positive rates by 37.3% and reduce requested biopsies by 27.8%, while maintaining the same level of sensitivity. This highlights the potential of AI in improving the accuracy, consistency, and efficiency of breast ultrasound diagnosis.


Subject(s)
Algorithms , Artificial Intelligence , Breast Neoplasms/diagnostic imaging , Breast/diagnostic imaging , Early Detection of Cancer , Ultrasonography/methods , Adult , Aged , Breast Neoplasms/diagnosis , Female , Humans , Mammography/methods , Middle Aged , ROC Curve , Radiologists/statistics & numerical data , Reproducibility of Results , Retrospective Studies
5.
Case Rep Radiol ; 2014: 427427, 2014.
Article in English | MEDLINE | ID: mdl-25143853

ABSTRACT

We report the multimodality imaging findings of peritoneal inclusion cysts in two adolescent females each with a prior history of abdominal surgery. The few reports of peritoneal inclusion cysts in the pediatric population have largely focused on the clinical and pathological features of this entity. We wish to emphasize the imaging findings of peritoneal inclusion cysts on multiple modalities, the advantage of MRI in confirming the diagnosis, and the need to keep considering this diagnosis in patients who present with a pelvic cystic mass, with a history of surgery, even if remote. Additionally, we review the pathology, pathophysiology, differential diagnosis, and treatment options of peritoneal inclusion cysts.

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